import numpy as np
import pandas as pd
import requests
import string
import zipfile
from datetime import datetime

from six import BytesIO


def covid():
    from dtale.cli.loaders.csv_loader import loader_func as load_csv

    data = load_csv(
        path="https://raw.githubusercontent.com/nytimes/covid-19-data/master/us-states.csv",
        parse_dates=["date"],
    )
    codes = load_csv(
        path="https://raw.githubusercontent.com/jasonong/List-of-US-States/master/states.csv"
    )
    codes = codes.set_index("State").to_dict()["Abbreviation"]
    data["state_code"] = data["state"].map(codes)
    return data, None


def seinfeld():
    from dtale.cli.loaders.csv_loader import loader_func as load_csv

    episodes = load_csv(
        path="https://github.com/4m4n5/the-seinfeld-chronicles/raw/master/episode_info.csv"
    )
    episodes = episodes[[c for c in episodes.columns if c not in ["Unnamed: 0"]]]
    scripts = load_csv(
        path="https://github.com/4m4n5/the-seinfeld-chronicles/raw/master/scripts.csv"
    )
    scripts = scripts[
        [c for c in scripts.columns if c not in ["Unnamed: 0", "Season", "EpisodeNo"]]
    ]
    return pd.merge(episodes, scripts, how="inner", on="SEID"), None


def load_zip(url):
    response = requests.get(url)
    with zipfile.ZipFile(BytesIO(response.content)) as thezip:
        for zipinfo in thezip.infolist():
            yield zipinfo.filename, thezip.open(zipinfo.filename)


def simpsons():
    from dtale.cli.loaders.csv_loader import loader_func as load_csv
    import dtale.global_state as global_state

    global_state.set_app_settings(dict(max_column_width=100, max_row_height=100))
    episodes = load_csv(
        path="https://github.com/aschonfeld/dtale-media/raw/master/datasets/simpsons_episodes.csv"
    )
    episodes = episodes.rename(columns={"id": "episode_id"})
    episodes.loc[:, "image_url"] = episodes["image_url"].apply(
        lambda x: "<img src='{}' style='height: auto; width: 100px;' />".format(x)
    )
    _, scripts = next(
        load_zip(
            "https://github.com/aschonfeld/dtale-media/raw/master/datasets/simpsons_script_lines.csv.zip"
        )
    )
    scripts = pd.read_csv(scripts)
    df = pd.merge(episodes, scripts, how="inner", on="episode_id")
    formatting = {"image_url": {"fmt": {"html": True}}}
    return df, {"columnFormats": formatting}


def video_games():
    _, games = next(
        load_zip(
            "https://github.com/aschonfeld/dtale-media/raw/master/datasets/vgsales.csv.zip"
        )
    )
    return pd.read_csv(games), None


def movies():
    _, movies = next(
        load_zip(
            "https://github.com/aschonfeld/dtale-media/raw/master/datasets/IMDb_movies.csv.zip"
        )
    )
    movies = pd.read_csv(movies)
    movies.loc[:, "year"] = (
        movies["year"].where(~(movies["year"] == "TV Movie 2019"), "2019").astype("int")
    )
    return movies, None


def time_dataframe():
    def series_data():
        if hasattr(np.random, "default_rng"):
            return np.random.default_rng(2).standard_normal(30)
        return np.random.randn(30)

    cols = string.ascii_uppercase[:4]
    data = {
        c: pd.Series(
            series_data(),
            index=pd.DatetimeIndex(
                pd.date_range(datetime(2000, 1, 1), periods=30, freq="B")
            ),
        )
        for c in cols
    }
    return pd.DataFrame(data), None
